Zheng Kun, Hou Yushan, Zhang Yiming, Wang Fei, Sun Aihua, Yang Dong
State Key Laboratory of Proteomics, Beijing Proteome Research Center, National Center for Protein Sciences (Beijing), Beijing Institute of Lifeomics, Beijing, China.
Department of Orthopedics, General Hospital of Southern Theater Command, Guangzhou, China.
Front Oncol. 2023 Feb 16;13:1111570. doi: 10.3389/fonc.2023.1111570. eCollection 2023.
Osteosarcoma is the most common primary malignant bone tumor. The existing treatment regimens remained essentially unchanged over the past 30 years; hence the prognosis has plateaued at a poor level. Precise and personalized therapy is yet to be exploited.
One discovery cohort (n=98) and two validation cohorts (n=53 & n=48) were collected from public data sources. We performed a non-negative matrix factorization (NMF) method on the discovery cohort to stratify osteosarcoma. Survival analysis and transcriptomic profiling characterized each subtype. Then, a drug target was screened based on subtypes' features and hazard ratios. We also used specific siRNAs and added a cholesterol pathway inhibitor to osteosarcoma cell lines (U2OS and Saos-2) to verify the target. Moreover, PermFIT and ProMS, two support vector machine (SVM) tools, and the least absolute shrinkage and selection operator (LASSO) method, were employed to establish predictive models.
We herein divided osteosarcoma patients into four subtypes (S-I ~ S-IV). Patients of S- I were found probable to live longer. S-II was characterized by the highest immune infiltration. Cancer cells proliferated most in S-III. Notably, S-IV held the most unfavorable outcome and active cholesterol metabolism. SQLE, a rate-limiting enzyme for cholesterol biosynthesis, was identified as a potential drug target for S-IV patients. This finding was further validated in two external independent osteosarcoma cohorts. The function of SQLE to promote proliferation and migration was confirmed by cell phenotypic assays after the specific gene knockdown or addition of terbinafine, an inhibitor of SQLE. We further employed two machine learning tools based on SVM algorithms to develop a subtype diagnostic model and used the LASSO method to establish a 4-gene model for predicting prognosis. These two models were also verified in a validation cohort.
The molecular classification enhanced our understanding of osteosarcoma; the novel predicting models served as robust prognostic biomarkers; the therapeutic target SQLE opened a new way for treatment. Our results served as valuable hints for future biological studies and clinical trials of osteosarcoma.
骨肉瘤是最常见的原发性恶性骨肿瘤。在过去30年里,现有的治疗方案基本没有变化;因此,预后一直处于较差水平。精确的个性化治疗尚未得到充分利用。
从公共数据源收集了一个发现队列(n = 98)和两个验证队列(n = 53和n = 48)。我们对发现队列进行非负矩阵分解(NMF)方法以对骨肉瘤进行分层。生存分析和转录组分析对每个亚型进行了特征描述。然后,根据亚型特征和风险比筛选药物靶点。我们还使用特异性小干扰RNA(siRNA)并向骨肉瘤细胞系(U2OS和Saos-2)中添加胆固醇途径抑制剂来验证该靶点。此外,使用两个支持向量机(SVM)工具PermFIT和ProMS以及最小绝对收缩和选择算子(LASSO)方法建立预测模型。
我们在此将骨肉瘤患者分为四个亚型(S-I至S-IV)。发现S-I型患者可能存活时间更长。S-II型的特征是免疫浸润最高。S-III型中癌细胞增殖最多。值得注意的是,S-IV型的预后最不利且胆固醇代谢活跃。鲨烯环氧酶(SQLE)是胆固醇生物合成的限速酶,被确定为S-IV型患者的潜在药物靶点。这一发现在两个外部独立的骨肉瘤队列中得到了进一步验证。在特异性基因敲低或添加特比萘芬(一种SQLE抑制剂)后,通过细胞表型分析证实了SQLE促进增殖和迁移的功能。我们进一步使用基于SVM算法的两个机器学习工具开发了一个亚型诊断模型,并使用LASSO方法建立了一个用于预测预后的4基因模型。这两个模型也在一个验证队列中得到了验证。
分子分类增强了我们对骨肉瘤的理解;新型预测模型可作为强大的预后生物标志物;治疗靶点SQLE为治疗开辟了新途径。我们的结果为骨肉瘤未来的生物学研究和临床试验提供了有价值的线索。